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What is theoretical computer science?

What is theoretical computer science?. Sanjeev Arora Princeton University. Nov 2006. The algorithm-enabled economy. What is the underlying science ?. Brief pre-History. “Computational thinking” pre 20 th century Leibniz, Babbage, Lady Ada, Boole etc .

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What is theoretical computer science?

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  1. What is theoreticalcomputer science? Sanjeev Arora Princeton University Nov 2006

  2. The algorithm-enabled economy What is the underlying science ?

  3. Brief pre-History • “Computational thinking” pre 20th centuryLeibniz, Babbage, Lady Ada, Boole etc. • Incompleteness of axiomatic mathHilbert, Goedel, etc. (~1930) • Formalization of “What is Computation?”;“What problems can computers never solve?” Turing, Church, Post etc. (~1936) • “Computation is everywhere” (1940s and onwards) IBM mainframes, DNA, Game of Life, Billiards Balls,..

  4. Is it a game, Is it an ecosystem, Is it a computer?(Game of life, 1968) • Rules: At each step, in each cell • Survival: Critter survives if it has exactly 2 or 3 neighbors • Death: Critter dies if it has 1 or fewer neighbors, or more than 3. • Birth: If cell was empty and has 3 critters as neighbors, new critter is born. (J. Conway) Moral: Computation lurks everywhere.

  5. A central theme in modern TCS: Computational Complexity How much time (i.e., # of basic operations) are needed to solve an instance of the problem? Example: Traveling Salesperson Problem on n cities n =49 Number of all possible salesman tours = n! (> # of atoms in the universe for n =49) One key distinction: Polynomial time (n3, n7 etc.) versus Exponential time (2n, n!, etc.)

  6. Some other important themes in TCS • Efficiency common measures: computation time, memory, parallelism, randomness,.. • Impossibility resultsintellectual ancestors: impossibility of perpetual motion, impossibility of trisecting an angle, incompleteness theorem, undecidability, etc. • Approximationapproximately optimal answers, algorithms that work “most of the time”,mathematical characterizations that are approximate (e.g., approximatemax-flow min-cut theorem) • Central role of randomnessrandomized algorithms and protocols, probabilistic encryption,random graph models, probabilistic models of the WWW, etc. • ReductionsNP-completeness and other intractability results (including complexity-based cryptography)

  7. Coming up: Vignettes • What is the computational cost of automating brilliance? • What does it mean to learn? • What does it mean to learn nothing? • What is the computational power of physical systems? • Will algorithmic thinking become crucial for the social and natural sciences? • How many bits of a math proof do you need to read to check it?

  8. Vignette 1 What is the computational cost of automating brilliance or serendipity? (P versus NP and related musings)

  9. Is there an inherent difference between being creative / brilliant and being able to appreciate creativity / brilliance? • Writing the Moonlight Sonata • Proving Fermat’s Last Theorem • Coming up with a low-cost salesman tour • Appreciating/verifying any of the above When formulated as “computational effort”, just the P vs NP Question.

  10. “General Satisfiability” is NP-complete Given: Set of “constraints”Desired: An n-bit “solution” that satisfies them all (Important: Given candidate solution, it should be easy to verify whether or not it satisfies the constraints.) “Finding a needle in a haystack” “P = NP” is equivalent to“We can always find the solution to general satisfiability(if one exists) in polynomial time.”

  11. Example: Boolean satisfiability • Does this formula have a satisfying assignment? • What if instead we had 100 variables? • 1000 variables? • How long will it take to determine the assignment? (A + B + C) · (D + F + G) · (A + G + K) · (B + P + Z) · (C + U + X)

  12. “Reduction” “If you give me a place to stand, I will move the earth.” – Archimedes (~ 250BC) “If you give me a polynomial-time algorithm for Boolean Satisfiability, I will give you a polynomial-time algorithm for every NP problem.” --- Cook, Levin (1971) “Every NP problem can be disguised as Boolean Satisfiability.”

  13. If P = NP, then brilliance will become routine • Proofs of Math Theorems can be found in time polynomial in the proof length • Patterns in experimental data can be found in time polynomial in the length of the pattern. • All current cryptosystems compromised. • Many AI problems have efficient algorithms. “Would do for creativity what controlled nuclear fusion would do for our energy needs.”

  14. Can we turn into Vignette 2 What does it mean to learn?(Theory of machine learning) Learning: To gain knowledge or understanding of or skill in by study, instruction, or experience

  15. V (white vegetarian) (nonwhite nonsmoker) V V PAC Learning (Probabilistic Approximately Correct) Sample from a Distribution on Datapoints: Labeled n-bit vectors (white, tall, vegetarian, smoker,…,) “Has disease” (nonwhite, short, vegetarian, nonsmoker,..) “No disease” L. Valiant V Desired: Short OR-of-AND (i.e., DNF) formula that describes  fraction of data (if one exists) Distribution V Question: What concepts can be learnt in polynomial time?

  16. Benefits of PAC definition • Impossibility results: learning many concepts is as hard assolving well-known hard problems (TSP, integer factoring..)  implications for goals/methodology of AI • New learning algorithms:Fourier methods, noise-tolerantlearning, advances in sampling, VC dimension theory, etc. • Radically new concepts: Example: Boosting (Freund-Schapire) Weak learning (r = 0.51)  Strong learning (r = 0.99)

  17. Vignette 3 What does it mean to learn nothing? Suggestions? Encrypted message • Encrypted message isstatistically random (cumbersome to achieve) • Encrypted message“looks” like somethingAdversary could efficiently • generate himself. Achievable; Aha! moment for modern cryptography;

  18. Example: Public closed-ballot elections • Hold an election in this room • Everyone can speak publicly (i.e. no computers, email, etc.) • At the end everyone must agree on who won and by what margin • No one should know which way anyone else voted • Is this possible? • Yes! (A. Yao, 1985) “Privacy-preserving Computations” (Important research area)

  19. Zero Knowledge Proofs [Goldwasser, Micali, Rackoff ’85] • Desire: Prox card reader should not store “signatures” – potential security leak • Just ability to recognize signatures! • Learn nothing about signature except that it is a signature prox card prox card reader Student “ZK Proof”: Everything that the verifier sees in the interaction, it could easily have generated itself.

  20. Illustration: Zero-Knowledge Proof that “Sock A is different from sock B” • Usual proof: “Look, sock A has a tiny hole and sock B doesn’t!” • ZKP: “OK, why don’t you put both socks behind your back. Show me a random one, and I will say whether it is sock A or sock B. Repeat as many times as you like, I will always be right.” • Why does verifier learn “nothing”? (Except that socks are indeed different.) Sock A Sock B

  21. How to prove that something doesn’t exist(ZK proof for graph nonisomorphism; template for many other protocols) Task: Prove to somebody that two graphs G1, G2 are not isomorphic Verifier randomly (and privately) picks one of G1, G2 and permutes its vertices to get H. Prover has to identify which of G1, G2 this graph came from. a graph Verifier learns nothing new!

  22. Vignette 4 What is the computational power of physical systems? Church-Turing Thesis: Every physically realizable computation can be performed on a Java program. (Or Turing machine) Intuition: “Just write a Java program to simulate the physics!”

  23. Strong form of Church Turing Thesis Every physically realizable computation can be performed on a Turing Machine with polynomial slowdown (e.g., n steps on physical computer  n2 steps on a TM) Feynman(1981): Seems false if you think about quantum mechanics QED (1670) F = ma etc.

  24. QM  Electron can be “in two places at the same time”  n electrons can be “in 2nplaces at the same time” (massively parallel computation??) Quantum Fourier Transform “Quantum computers” can factor integers in polynomial time. Peter Shor Can quantum computers be built or does quantum mechanics need to be revised? Physicists(initially): “No” and “No”. Noise!! Shor and others:Quantum Error Correction!

  25. Some recent speculation (A. Yao) Computational complexity of physical theories (e.g., general relativity)? (Denek and Douglas ‘06): Computational complexity as a possible way to choose between various solutions (“landscapes”) in string theory.

  26. Vignette 5 Is algorithmic thinking the future of social and natural sciences? Gene Myers, inventorof shortgun algorithm for gene sequencing Summer 2000

  27. Shotgun sequencing Goal: Infer genome (long sequence of A,C,T,G) • Method: • Extract many random fragments of selected sizes (2, 10, 50 150kb) • For each fragment, read first and last 500-1000 nucleotides (paired reads) • Computationally assemble genome from paired reads. “Algorithm driven science”

  28. Other emerging areas of interest Understanding the “web” of connections on the WWW(hyperlinks, myspace, blogspot,..) Mechanism design (e.g. for sponsored ads on ) • > $10B/year • millions of mini “auctions” per second • economics + algorithms! Quantitative Sociology? Nanotechnology; Molecular self-assembly Massively parallel, error-prone computing?

  29. Vignette 6 Do you need to read a math proof completely to check it? (PCP Theorem and the intractability of finding approximate solutions to NP-hard optimization problems) Recall: Math can be axiomatized (e.g., Peano Arithmetic) Proof = Formal sequence of derivations from axioms “PCP” : Probabilistically Checkable Proofs

  30. NP = PCP(log n, 1) Verification of math proofs [A., Safra’92] [A., Lund, Motwani, Sudan, Szegedy ‘92] (spot-checking) n bits Theorem Proof M O(1) bits M runs in poly(n) time • Theorem correct  there is a proof that M accepts w. prob. 1 • Theorem incorrect  M rejects every claimed proof w. prob 1/2

  31. An implication of PCP result If you ever find an algorithm that computes a 1.02-approximation to Traveling Salesman, then you can improve that algorithm to one that always computes the optimum solution.  Approximation is NP-complete! (Similar results now known for dozens of other problems) Other applications: cryptographic protocols, error correcting codes. (Also motivated a resurgence in approximation algorithms)

  32. I can’t wait to see what the next 30 years will bring! Theoretical CS Thank You

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